1

I have a data result from recommender system like this for example

id          content_id       Rank
08773338    aaaa              1
08773338    bbbb              2
08773338    cccc              3
08333777    bbbb              1
08333777    aaaa              2
08333777    cccc              3

then I want to drop 'bbbb' content id so that it becomes like this

for example

id          content_id       Rank
08773338    aaaa              1
08773338    cccc              3
08333777    aaaa              2
08333777    cccc              3

How do I re-rank the rank column after the bbbb label is removed?

like this

id          content_id       Rank
08773338    aaaa              1
08773338    cccc              2
08333777    aaaa              1
08333777    cccc              2
2

You can use groupby.rank after masking/subsetting the dataframe:

u = df[df['content_id'].ne("bbbb")].copy()
u['Rank'] = u.groupby("id")['Rank'].rank(method='dense')#.reset_index(drop=True)

print(u)
        id content_id  Rank
0  8773338       aaaa   1.0
2  8773338       cccc   2.0
4  8333777       aaaa   1.0
5  8333777       cccc   2.0
1

You can do this with grp.cumcount:

import pandas as pd
from io import StringIO
df = pd.read_table(StringIO("""id          content_id       Rank
08773338    aaaa              1
08773338    bbbb              2
08773338    cccc              3
08333777    bbbb              1
08333777    aaaa              2
08333777    cccc              3"""), sep="\s+")

df = df.loc[df["content_id"] != "bbbb", :]
df["Rank"] = df.groupby("id").cumcount() + 1

Output:

        id content_id  Rank
0  8773338       aaaa     1
2  8773338       cccc     2
4  8333777       aaaa     1
5  8333777       cccc     2

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